CVLGSDASMay 17, 2020

Learning Individual Speaking Styles for Accurate Lip to Speech Synthesis

arXiv:2005.08209v1141 citations
AI Analysis

This work addresses the challenge of accurate lip-to-speech synthesis for applications like hearing aids or noisy environments, though it is incremental by focusing on single-speaker scenarios.

The paper tackles the problem of generating natural speech from lip movements for individual speakers in unconstrained settings, achieving results that are four times more intelligible than previous methods.

Humans involuntarily tend to infer parts of the conversation from lip movements when the speech is absent or corrupted by external noise. In this work, we explore the task of lip to speech synthesis, i.e., learning to generate natural speech given only the lip movements of a speaker. Acknowledging the importance of contextual and speaker-specific cues for accurate lip-reading, we take a different path from existing works. We focus on learning accurate lip sequences to speech mappings for individual speakers in unconstrained, large vocabulary settings. To this end, we collect and release a large-scale benchmark dataset, the first of its kind, specifically to train and evaluate the single-speaker lip to speech task in natural settings. We propose a novel approach with key design choices to achieve accurate, natural lip to speech synthesis in such unconstrained scenarios for the first time. Extensive evaluation using quantitative, qualitative metrics and human evaluation shows that our method is four times more intelligible than previous works in this space. Please check out our demo video for a quick overview of the paper, method, and qualitative results. https://www.youtube.com/watch?v=HziA-jmlk_4&feature=youtu.be

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